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**Job Description**
Enterprises store massive volumes of business-critical information in relational databases, but semantic access to this data remains limited by schema complexity and rigid query interfaces. A key research question we explore is whether we can construct relational embeddings across entities that capture the rich semantic meaning of business objects which are grounded not just in values, but in relationships, constraints, and structure inherent to relational data. Building on advances in relational learning, which has proven effective for predictive tasks such as classification and regression, we investigate how these embeddings can be extended to support semantic search, user intent understanding, and agentic AI workflows. Relational embeddings enable semantic indexing over structured data, unlocking faster and more precise search across large-scale, multimodal relational databases. As part of this effort, you will survey and prototype relational m...
Enterprises store massive volumes of business-critical information in relational databases, but semantic access to this data remains limited by schema complexity and rigid query interfaces. A key research question we explore is whether we can construct relational embeddings across entities that capture the rich semantic meaning of business objects which are grounded not just in values, but in relationships, constraints, and structure inherent to relational data. Building on advances in relational learning, which has proven effective for predictive tasks such as classification and regression, we investigate how these embeddings can be extended to support semantic search, user intent understanding, and agentic AI workflows. Relational embeddings enable semantic indexing over structured data, unlocking faster and more precise search across large-scale, multimodal relational databases. As part of this effort, you will survey and prototype relational m...